Publication | Closed Access
Machine Learning Enables Multi‐Degree‐of‐Freedom Reconfigurable Terahertz Holograms with Cascaded Diffractive Optical Elements
23
Citations
36
References
2023
Year
Thz PhotonicsHolographyTerahertz TechnologyOptical MaterialsEngineeringMetamaterialsTerahertz PhotonicsTerahertz PhysicsOptical PropertiesOptical SystemsNanophotonicsPhotonicsTerahertz FrequenciesTerahertz ScienceComputational Optical ImagingTerahertz DevicesApplied PhysicsTerahertz TechniqueAbstract Machine LearningSignal MultiplexingOptoelectronicsTerahertz ApplicationsDiffractive Optic
Abstract Machine learning can empower the design of cascaded diffractive optical elements (DOEs) at terahertz frequencies enabling the realization of holograms with a tailored multi‐degree‐of‐freedom reconfigurable operation when altering either the number, spacing, rotational alignment, and/or order of the elements. This unprecedented control over the spatial terahertz light distribution can profoundly impact multiple terahertz applications such as signal multiplexing, imaging, and displays. This work demonstrates this multi‐degree‐of‐freedom control in structures fabricated through 3D printing employing low‐loss materials. The designs are validated through 3D finite‐difference time‐domain (FDTD) simulations and experimental measurements, showing that, in all cases, the desired diffraction patterns are generated.
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